Department of Fine Arts, Changzhi University, Changzhi 046011, Shanxi Province, China.
Comput Intell Neurosci. 2022 Jul 19;2022:9383273. doi: 10.1155/2022/9383273. eCollection 2022.
Urban landscape design is of great significance to the development of the city. To solve the problem of manual acquisition characteristics of urban landscape design systems and low target detection accuracy, a new idea based on neural network and multi-objective testing technology construction urban landscape design system is proposed. By analyzing key technologies, the database establishment proposes to build a city landscape design system. Establish a city landscape design 3D model library using neural network and multi-objective testing technology. The system enables terrain measurements, GIS, visualization, massive data processing, virtual reality technology, etc., so that users can more and more effectively feel the rationality of space design and the feasibility of planning program. Through the experimental test, the following conclusions were obtained. First, the accuracy of multi-objective detection technology is maintained at around 88%. Second, the system landscape generation module generates fast, and the calculation time is between 0.57 and 46 s. Third, through analysis of the evaluation results of ecological suitability, the A-city landscape ecological function partition is divided into the plan for the plan to provide reliable data protection. The fourth is based on satisfaction evaluation indicators, which is conducive to the choice of the optimal plan of urban landscape design, thereby promoting the sustainable development of the city.
城市景观设计对城市的发展具有重要意义。为了解决城市景观设计系统人工获取特征和目标检测精度低的问题,提出了一种基于神经网络和多目标测试技术构建城市景观设计系统的新思路。通过分析关键技术,提出了数据库建立方案,建立城市景观设计系统。利用神经网络和多目标测试技术建立城市景观设计 3D 模型库。该系统能够实现地形测量、GIS、可视化、大数据处理、虚拟现实技术等功能,使用户能够更有效地感受到空间设计的合理性和规划方案的可行性。通过实验测试,得出以下结论:首先,多目标检测技术的精度保持在 88%左右;其次,系统景观生成模块生成速度快,计算时间在 0.57 到 46 秒之间;第三,通过对生态适宜性评价结果的分析,对 A 市景观生态功能进行分区,为规划方案提供可靠的数据保护。第四,基于满意度评价指标,有利于选择城市景观设计的最优方案,从而促进城市的可持续发展。